Load prediction of urban gas based on Attention-GRU model

With the improvement of pricing mechanism and the advancement of supply-storage-sale system reform for natural gas, many opportunities and challenges are brought in the process of urban gas procurement, transport channels and user balance. Therefore, the analysis and prediction of natural gas consum...

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Main Author: ZHANG Yinghui
Format: Article
Language:zho
Published: Editorial Office of Oil & Gas Storage and Transportation 2022-11-01
Series:You-qi chuyun
Subjects:
Online Access:http://yqcy.xml-journal.net/cn/article/doi/10.6047/j.issn.1000-8241.2022.11.015
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author ZHANG Yinghui
author_facet ZHANG Yinghui
author_sort ZHANG Yinghui
collection DOAJ
description With the improvement of pricing mechanism and the advancement of supply-storage-sale system reform for natural gas, many opportunities and challenges are brought in the process of urban gas procurement, transport channels and user balance. Therefore, the analysis and prediction of natural gas consumption is of great significance to the construction of urban energy security system. According to the “supply-storage-sale” plan management system of natural gas, the accurate gas prediction model for the gas supply and consumption sides was specially studied, a neural network prediction model based on time series characteristics in combination with the feature combination of Attention + GRU model was proposed,and a gas load prediction model with wider application range and higher prediction accuracy with the GRU algorithm and Attention mechanism fused was also established. In addition, the algorithm model of cyclic neural network GRU in combination with Attention was applied to urban gas load prediction for the first time, showing better prediction effect than other algorithm models, and it could provide support for enhancing the stable supply of natural gas in the region.
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spelling doaj.art-d96b1088f935418ca5e326fa95041a462024-04-15T07:09:40ZzhoEditorial Office of Oil & Gas Storage and TransportationYou-qi chuyun1000-82412022-11-0141111349135410.6047/j.issn.1000-8241.2022.11.015yqcy-41-11-1349Load prediction of urban gas based on Attention-GRU modelZHANG Yinghui0Beijing Gas Group Co.Ltd.With the improvement of pricing mechanism and the advancement of supply-storage-sale system reform for natural gas, many opportunities and challenges are brought in the process of urban gas procurement, transport channels and user balance. Therefore, the analysis and prediction of natural gas consumption is of great significance to the construction of urban energy security system. According to the “supply-storage-sale” plan management system of natural gas, the accurate gas prediction model for the gas supply and consumption sides was specially studied, a neural network prediction model based on time series characteristics in combination with the feature combination of Attention + GRU model was proposed,and a gas load prediction model with wider application range and higher prediction accuracy with the GRU algorithm and Attention mechanism fused was also established. In addition, the algorithm model of cyclic neural network GRU in combination with Attention was applied to urban gas load prediction for the first time, showing better prediction effect than other algorithm models, and it could provide support for enhancing the stable supply of natural gas in the region.http://yqcy.xml-journal.net/cn/article/doi/10.6047/j.issn.1000-8241.2022.11.015urban gasgas loadpredictionneural networkgru modelattention mechanism
spellingShingle ZHANG Yinghui
Load prediction of urban gas based on Attention-GRU model
You-qi chuyun
urban gas
gas load
prediction
neural network
gru model
attention mechanism
title Load prediction of urban gas based on Attention-GRU model
title_full Load prediction of urban gas based on Attention-GRU model
title_fullStr Load prediction of urban gas based on Attention-GRU model
title_full_unstemmed Load prediction of urban gas based on Attention-GRU model
title_short Load prediction of urban gas based on Attention-GRU model
title_sort load prediction of urban gas based on attention gru model
topic urban gas
gas load
prediction
neural network
gru model
attention mechanism
url http://yqcy.xml-journal.net/cn/article/doi/10.6047/j.issn.1000-8241.2022.11.015
work_keys_str_mv AT zhangyinghui loadpredictionofurbangasbasedonattentiongrumodel